Reducing Children`s Television Viewing to Prevent Obesity

Transcription

Reducing Children`s Television Viewing to Prevent Obesity
ORIGINAL CONTRIBUTION
Reducing Children’s Television Viewing
to Prevent Obesity
A Randomized Controlled Trial
Thomas N. Robinson, MD, MPH
T
HE UNITED STATES HAS EXPERIenced alarming increases in
obesity among children and
adolescents.1 However, most
available treatments for obese children have yielded only modest, unsustained effects.2 Consequently, prevention is considered to hold the greatest
promise.3 Unfortunately, most prevention programs that specifically attempt to reduce fat and energy intake
and increase physical activity have been
ineffective at changing body fatness.4,5
As a result, there is a need for innovative approaches to prevent obesity.
There is widespread speculation that
television viewing is one of the most easily modifiable causes of obesity among
children. American children spend more
time watching television and videotapes and playing video games than doing anything else except sleeping.6 Two
primary mechanisms by which television viewing contributes to obesity have
been suggested: reduced energy expenditure from displacement of physical activity and increased dietary energy intake, either during viewing or as a result
of food advertising.
Cross-sectional epidemiological studies have consistently found relatively
weak positive associations between television viewing and child and adolescent adiposity.7-21 Prospective studies
are less common and have produced
mixed results.7,14 The consistently weak
associations found in epidemiological
Context Some observational studies have found an association between television
viewing and child and adolescent adiposity.
Objective To assess the effects of reducing television, videotape, and video game
use on changes in adiposity, physical activity, and dietary intake.
Design Randomized controlled school-based trial conducted from September 1996
to April 1997.
Setting Two sociodemographically and scholastically matched public elementary schools
in San Jose, Calif.
Participants Of 198 third- and fourth-grade students, who were given parental consent to participate, 192 students (mean age, 8.9 years) completed the study.
Intervention Children in 1 elementary school received an 18-lesson, 6-month classroom curriculum to reduce television, videotape, and video game use.
Main Outcome Measures Changes in measures of height, weight, triceps skinfold thickness, waist and hip circumferences, and cardiorespiratory fitness; selfreported media use, physical activity, and dietary behaviors; and parental report of
child and family behaviors. The primary outcome measure was body mass index, calculated as weight in kilograms divided by the square of height in meters.
Results Compared with controls, children in the intervention group had statistically
significant relative decreases in body mass index (intervention vs control change: 18.38
to 18.67 kg/m2 vs 18.10 to 18.81 kg/m2, respectively; adjusted difference −0.45 kg/m2
[95% confidence interval {CI}, −0.73 to −0.17]; P = .002), triceps skinfold thickness (intervention vs control change: 14.55 to 15.47 mm vs 13.97 to 16.46 mm, respectively;
adjusted difference, −1.47 mm [95% CI, −2.41 to −0.54]; P = .002), waist circumference (intervention vs control change: 60.48 to 63.57 cm vs 59.51 to 64.73 cm, respectively; adjusted difference, −2.30 cm [95% CI, −3.27 to −1.33]; P,.001), and waistto-hip ratio (intervention vs control change: 0.83 to 0.83 vs 0.82 to 0.84, respectively;
adjusted difference, −0.02 [95% CI, −0.03 to −0.01]; P,.001). Relative to controls, intervention group changes were accompanied by statistically significant decreases in children’s reported television viewing and meals eaten in front of the television. There were
no statistically significant differences between groups for changes in high-fat food intake, moderate-to-vigorous physical activity, and cardiorespiratory fitness.
Conclusions Reducing television, videotape, and video game use may be a promising, population-based approach to prevent childhood obesity.
JAMA. 1999;282:1561-1567
studies may be due to the measurement error in self-reports of television
viewing. As a result, additional epidemiological studies would not be expected to clarify the true nature of this
relationship.22
www.jama.com
Author Affiliation: Departments of Pediatrics and
Medicine, Stanford Center for Research in Disease Prevention, Stanford University School of Medicine, Palo
Alto, Calif.
Corresponding Author and Reprints: Thomas N. Robinson, MD, MPH, Stanford Center for Research in Disease Prevention, Stanford University School of Medicine, 1000 Welch Rd, Palo Alto, CA 94304 (e-mail:
[email protected]).
JAMA, October 27, 1999—Vol 282, No. 16 1561
CHILDREN’S TELEVISION VIEWING AND OBESITY PREVENTION
A causal relationship can only be demonstrated in an experimental trial, in
which manipulation of the risk factor
changes the outcome.23 Therefore, we
conducted a randomized, controlled,
school-based trial of reducing third- and
fourth-grade children’s television, videotape, and video game use to assess the
effects on adiposity and the hypothesized mechanisms of physical activity
and dietary intake. We hypothesized that
compared with controls, children exposed to the television reduction intervention would significantly decrease
their levels of adiposity.
METHODS
All third- and fourth-grade students in
2 public elementary schools in a single
school district in San Jose, Calif, were
eligible to participate. Schools were sociodemographically and scholastically
matched by district personnel. School
principals and teachers agreed to participate prior to randomization. Parents or guardians provided signed written informed consent for their children
to participate in assessments and for their
own participation in telephone interviews. One school was randomly assigned to implement a program to reduce television, videotape, and video
game use. The other school was assigned to be an assessments-only control. Participants and school personnel, including classroom teachers, were
informed of the nature of the intervention but were unaware of the primary hypothesis. The study was approved by the
Stanford University Panel on Human
Subjects in Research, Palo Alto, Calif.
Intervention
To test the specific role of television, videotape, and video game use in the development of body fatness, as well as effects on dietary intake and physical
activity, it was necessary to design an intervention that decreased media use
alone without specifically promoting
more active behaviors as replacements.
This was accomplished by limiting access to television sets and budgeting use
while simultaneously becoming more selective viewers or players.
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JAMA, October 27, 1999—Vol 282, No. 16
The intervention, which was based in
Bandura’s social cognitive theory,24 consisted of incorporating 18 lessons of 30
to 50 minutes into the standard curriculum that was taught by the regular thirdand fourth-grade classroom teachers. The
teachers were trained by the research
staff, and the majority of lessons were
taught during the first 2 months of the
school year. Early lessons included selfmonitoring and self-reporting of television, videotape, and video game use to
motivate children to want to reduce the
time they spent in these activities. These
lessons were followed by a television
turnoff,25 during which children were
challenged to watch no television or videotapes and play no video games for 10
days. After the turnoff, children were encouraged to follow a 7-hour per week
budget. Additional lessons taught children to become “intelligent viewers” by
using their viewing and video game time
more selectively. Several final lessons enlisted children as advocates for reducing media use. The entire curriculum
consisted of approximately 18 hours of
classroom time. Newsletters that were
designed to motivate parents to help their
children stay within their time budgets
and that suggested strategies for limiting television, videotape, and video game
use for the entire family were distributed to parents.
To help with budgeting, each household also received an electronic television time manager (TV Allowance,
Mindmaster, Inc, Miami, Fla). This device locks onto the power plug of the
television set and monitors and budgets viewing time for each member of
the household through use of personal identification codes. Because it
controls power to the television, it also
controls video cassette recorder (VCR)
and video game use. Families could request additional units for every television in their homes, at no cost.
Outcome Measurements
Assessments were performed by trained
staff, blinded to the experimental design, at baseline (September 1996) and
after the completion of the intervention (April 1997). At each time point,
on the same days in both schools, children completed self-report questionnaires on 2 non-Monday weekdays. A
research staff member read each question out loud. Classroom teachers did
not participate in the assessments. Physical measures were performed during 2
physical education periods at each time
point, by the same staff in both schools.
Parents were interviewed by telephone
at baseline and after the intervention by
trained interviewers following a standardized protocol. Parents, children, and
teachers were not aware that the primary outcome was adiposity.
Body mass index (BMI), defined as
the weight in kilograms divided by the
square of the height in meters, was the
primary measure of adiposity.26,27 Standing height was measured using a portable direct-reading stadiometer and
body weight was measured using a digital scale, according to established guidelines.28,29 Test-retest reliabilities were
high (intraclass Spearman r.0.99 for
height, r.0.99 for weight). Triceps
skinfold thickness was included as a
measure of subcutaneous fat and was
measured on the right arm, according
to established guidelines.28,29 Testretest reliability was r.0.99 and skinfold thickness was highly correlated
with BMI (r = 0.82).
Waist and hip circumferences were
measured with a nonelastic tape at the
level of the umbilicus and the maximal extension of the buttocks, respectively, according to established guidelines.28,29 Test-retest reliabilities were
r.0.99. Waist and hip circumferences were correlated with BMI
(r = 0.87, r = 0.90, respectively) and triceps skinfold thickness (r = 0.72,
r = 0.78, respectively). The waist-tohip ratio was calculated as a measure
of body fat distribution.
Children reported the time they spent
“watching television,” “watching movies or videos on a VCR,” and “playing
video games,” separately for before
school and after school, “yesterday” and
“last Saturday” on the first assessment
day, and “yesterday” on the second assessment day. Prior to reading these
items, the research staff led children
CHILDREN’S TELEVISION VIEWING AND OBESITY PREVENTION
through several participatory timeestimating exercises. This instrument was
adapted from a similar instrument previously used in young adolescents with
high test-retest reliability (r = 0.94).15
Parents estimated the amount of time
their child spent watching television,
watching videotapes on the VCR, and
playing video games on a typical school
day and on a typical weekend day. Similar items have produced accurate estimates compared with videotaped
observation.30 There was moderate
agreement between parent and child reports of children’s media use (Spearman r = 0.31, P,.001 for television viewing; r = 0.17, P = .03 for videotape
viewing; r = 0.49, P,.001 for video game
playing). A previously validated 4-item
instrument was used to assess overall
household television viewing.31
Children and parents also estimated
the amount of time the child spent in
other sedentary behaviors, including,
using a computer, doing homework,
reading, listening to music, playing a
musical instrument, doing artwork or
crafts, talking with parents, playing
quiet games indoors, and at classes or
clubs (parent-child agreement Spearman r = 0.16, P,.05).
On both days children reported their
previous day’s out-of-school physical
activities, using a previously validated
activity checklist.32 Responses from the
2 days were averaged and weighted for
levels of intensity using standard energy expenditure estimates.33 Parents estimated the amount of time their child
spent in organized physical activities
(such as teams or sports classes) and
nonorganized physical activities (such
as playing sports, bicycling, rollerblading, etc) (parent-child agreement Spearman r = 0.16, P = .05).
On both days, children completed
1-day food frequency recalls for 60
foods in 26 food categories, based on
instruments previously validated in
third- through sixth-grade children.34,35 High-fat foods were those previously identified as the major contributors of fat in the diets of children35
and adults, 36 and were identified
through focus groups with children,
parents, and school lunch personnel.
Highly advertised foods included 3 categories representing sugary cereals, carbonated soft drinks, and foods from
fast-food restaurants.
Children also reported how often
they ate breakfast and dinner in a room
with the television turned on during the
past week, on 4-point scales ranging
from never to every day, and they reported the proportion of time they were
eating or drinking a snack (not including meals) while watching television or
videotapes or playing video games, on
a 3-point scale. Parents responded to
the same questions about their children, reporting the number of days in
the last week for meals (parent-child
agreement Spearman r = 0.24, P = .003)
and the percentage of time for snacking (parent-child agreement Spearman r = 0.02, P..05).
The maximal, multistage, 20-m,
shuttle run test (20-MST) was used to
assess cardiorespiratory fitness.37 The
20-MST has been found to be reliable
(test-retest r = 0.73-0.93),37-39 a valid
measure of maximum oxygen consumption as measured by treadmill testing (r = 0.69-0.87),38-42 and sensitive to
change42 in children.
Statistical Analysis
Baseline comparability of intervention and control groups was assessed
using nonparametric Wilcoxon rank
sum tests for scaled variables and x2
tests for categorical variables. As a primary prevention program, the intervention was designed to target the entire sample. Effects were expected and
intended to occur throughout the entire distribution of adiposity in the
sample—not just around a defined
threshold. Thus, for purposes of establishing the efficacy of this intervention, it is most appropriate to compare
the full distributions of BMI between
intervention and control groups. Therefore, to test the primary hypothesis, accounting for the design with school as
the unit of randomization (adjusting
for intraclass correlation), a mixedmodel analysis of covariance approach was used, with postinterven-
tion BMI as the dependent variable; the
intervention group (intervention vs
control) as the independent variable;
and baseline BMI, age, and sex as covariates (SAS MIXED procedure, SAS
version 6.12, SAS Institute Inc, Cary,
NC).43 The same analysis approach was
used for all secondary outcome variables, triceps skinfold thickness, waist
and hip circumferences, waist-to-hip ratio, and measures of dietary intake and
physical activity. Each outcome also was
tested for intervention by sex and intervention by age interactions. All analyses were completed on an intentionto-treat basis, and all tests of statistical
significance were 2-tailed with a = .05.
With an anticipated sample size of approximately 100 participants per group
and using the above analysis, the study
was designed to have 80% power to detect an effect size of 0.20 or greater. This
corresponded to estimated differences
between groups of about 0.75 BMI
units, 1.2 mm of triceps skinfold, 1.8
cm of waist circumference, and 2 hours
per week of television, videotape, and
video game use.
In children of this age, BMI, triceps
skinfold thickness, waist circumference, and hip circumference were all expected to increase over the course of the
experiment, as part of normal growth,
in both the intervention and control
groups. Therefore, effect sizes are reported as changes in the intervention
group relative to changes in the controls (relative differences). A negative
difference is termed a relative decrease
in comparison with the controls, even
if the actual value increased as a result
of normal growth and development.
RESULTS
The study design and participation are
shown in the F IGURE . Ninety-two
(86.8%) of 106 eligible children in the
intervention school and 100 (82.6%) of
121 eligible children in the control
school participated in baseline and
postintervention assessments. Intervention and control participants, respectively, were comparable in age
(mean [SD], 8.95 [0.64] vs 8.92 [0.70]
years, P = .69), sex (44.6% vs 48.5%
JAMA, October 27, 1999—Vol 282, No. 16 1563
CHILDREN’S TELEVISION VIEWING AND OBESITY PREVENTION
girls, P = .59), mean (SD) number of
televisions in the home (2.7 [1.3] vs 2.7
[1.1], P = .56), mean (SD) number of
video game players (systems) (1.5 [2.3]
vs 1.2 [1.7], P = .49) and percentage of
children with a television in their bedroom (43.5% vs 42.7%, P = .92). Physical measures but not self-reports were
included in the analysis for 11 children who were classified by their teachers as having limited English proficiency or having a learning disability.
Baseline and postintervention telephone interviews were completed by 68
(71.6%) and 75 (72.8%) of the parents of participating children in the intervention and control schools, respectively. Intervention school parents
reported greater maximum household
education levels than participating control school parents (45% vs 21% college graduates, P = .01) but did not differ significantly in ethnicity (80% vs
70% white, P = .19), sex of respondent
(82% vs 88% female, P = .33) or marital status (77% vs 67% married, P = .22).
Figure. Study Design and Participant Flow
2 Elementary Schools,
N = 227 Students
Randomization
by School
Intervention School
Grades 3 and 4,
n = 106 Students
No Consent to
Participate,
n = 11 Students
Baseline
Student Assessment,
n = 95
Parent Interview, n = 74
Control School
Grades 3 and 4,
n = 121 Students
No Consent to
Participate,
n = 18 Students
Baseline
Student Assessment,
n = 103
Parent Assessment,
n = 90
Intervention,
n = 95 Students
Lost to Follow-up,
n = 3 Students
Postintervention
Student Assessment,
n = 92
Parent Interview, n = 68
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Lost to Follow-up,
n = 3 Students
Postintervention
Student Assessment,
n = 100
Parent Interview, n = 75
JAMA, October 27, 1999—Vol 282, No. 16
Participation in the Intervention
Teachers reported teaching all lessons, although we did not collect detailed data determining whether the lessons were delivered as they were
intended. Ninety-five (90%) of 106 students in the intervention school participated in at least some of the television turnoff and 71 (67%) completed
the entire 10 days without watching
television or videotapes or playing video
games. During the budgeting phase of
the intervention, 58 (55%) of the students turned in at least 1 signed parent confirmation that they had stayed
below their television and videotape
viewing and video game playing budget for the previous week. Forty-four
parents (42%) returned response cards
reporting they had installed the TV Allowance and 29 families (27%) requested 1 or more additional TV Allowances.
Effects on Adiposity
Results of anthropometric measures are
presented in TABLE 1. At baseline, both
groups were comparable (P..10) on all
baseline measures of body composition. As expected for children of this
age, BMI, triceps skinfold thickness,
waist circumference, and hip circumference all increased in both intervention and control children during the
course of the school year. However,
compared with controls, children in the
intervention group had statistically significant relative decreases in BMI, triceps skinfold thickness, waist circumference, and waist-to-hip ratio (Table
1). There were no significant interventions by sex or intervention by age interactions for any of the body composition outcomes. The results did not
change when ethnicity and parent education were included as additional covariates for children with completed
parent interviews.
Although the sample size was insufficient to formally test for effects within
subgroups, it was desirable to further
characterize the effects of the intervention on participants with varying levels of adiposity, with a descriptive analysis. Intervention and control group
changes were compared within strata
defined by baseline levels of BMI, triceps skinfold, waist circumference, and
waist-to-hip ratio. For all body composition measures, effects of the intervention occurred across the entire distribution of baseline adiposity, with
greater intervention vs control differences evident among the middle and
higher strata of body fatness.
Effects on Media Use, Diet,
and Physical Activity
Child measures are presented in
TABLE 2 and parent measures are presented in TABLE 3. Both groups were
well matched at baseline, although intervention group children reported eating significantly more meals while
watching television, and participating
intervention group parents reported significantly less overall household television use and that their children spent
significantly more time in other sedentary behaviors at baseline.
The intervention significantly decreased children’s television viewing,
compared with controls, according to
both child and parent reports (relative
reductions of about one third from baseline). Intervention group children also
reported significantly greater reductions in video game use than controls.
The intervention also resulted in
greater, but not statistically significant, decreases in parent reports of children’s video game use, parent and child
reports of videotape viewing, and parent reports of overall household television viewing. There were no significant intervention by sex or intervention
by age interactions for any of the media use outcomes.
The intervention significantly reduced the frequency of children eating meals in a room with the television
turned on. Intervention group children also reported relative reductions
in servings of high-fat foods compared with controls, although these
differences were not statistically significant. There were no significant intervention effects on reports of children’s physical activity levels or
performance on the 20-MST of physi-
CHILDREN’S TELEVISION VIEWING AND OBESITY PREVENTION
COMMENT
This is the first experimental study to
demonstrate a direct association between television, videotape, and video
cal fitness. There were no significant intervention by sex or intervention by age
interactions for any of the diet or activity outcomes.
game use and increased adiposity. Because the intervention targeted reduction of media use alone, without substituting alternative behaviors, a causal
Table 1. Children’s Anthropometric Measures*
Baseline
Body mass index, kg/m2
Triceps skinfold thickness, mm
Waist circumference, cm
Hip circumference, cm
Waist-to-hip ratio
Postintervention
Intervention
18.38 (3.67)
Control
18.10 (3.77)
Intervention
18.67 (3.77)
Control
18.81 (3.76)
Adjusted Change
(95% CI)†
−0.45 (−0.73 to −0.17)
P Value
.002
14.55 (6.06)
60.48 (9.91)
13.97 (5.43)
59.51 (8.91)
15.47 (5.95)
63.57 (8.96)
16.46 (5.27)
64.73 (8.91)
−1.47 (−2.41 to −0.54)
−2.30 (−3.27 to −1.33)
.002
,.001
72.78 (8.91)
72.70 (8.78)
76.53 (7.94)
76.79 (8.37)
−0.27 (−1.08 to 0.53)
0.83 (0.05)
0.82 (0.05)
0.83 (0.06)
0.84 (0.05)
−0.02 (−0.03 to −0.01)
.50
,.001
*Baseline and postintervention values are unadjusted mean (SD). At baseline, both groups were comparable (P..10) on all measures of body composition.
†Change estimates and 95% confidence intervals (CIs) are the differences between intervention group and control group after adjustment by mixed-model analysis of covariance
for the baseline value, age, and sex.
Table 2. Child Measures of Television Viewing, Diet, and Physical Activity and Fitness*
Baseline
Hours per week
Television
Videotapes
Video games
Meals in front of television,
0-3 scale
Frequency of snacking in front
of the television, 1-3 scale
Daily servings of high-fat foods
Daily servings of highly
advertised foods
Other sedentary behaviors, h/d
Postintervention
Intervention
Control
Intervention
Control
Adjusted Change
(95% CI)†
P Value
15.35 (13.17)
4.74 (6.57)
15.46 (15.02)
5.52 (10.44)
8.80 (10.41)
3.46 (4.86)
14.46 (13.82)
5.21 (8.41)
−5.53 (−8.64 to −2.42)
−1.53 (−3.39 to 0.33)
,.001
.11
2.57 (5.10)
2.38 (1.75)
3.85 (9.17)
1.84 (1.78)‡
1.32 (2.72)
1.70 (1.49)
4.24 (10.00)
1.99 (1.78)
−2.54 (−4.48 to −0.60)
−0.54 (−0.98 to −0.12)
.01
.01
2.20 (0.56)
2.15 (0.61)
1.94 (0.51)
2.05 (0.59)
−0.11 (−0.27 to 0.04)
.16
6.15 (3.63)
1.36 (0.96)
6.62 (5.85)
1.55 (1.20)
5.14 (3.50)
1.47 (1.10)
6.17 (4.88)
1.48 (1.06)
−0.82 (−1.87 to 0.23)
0.06 (−0.24 to 0.36)
.12
.71
4.66 (3.81)
4.47 (6.37)
3.81 (2.66)
4.05 (4.53)
−0.34 (−1.21 to 0.52)
.44
Physical activity, metabolic
equivalent–weighted, min/wk
396.8 (367.8)
310.2 (250.7)
362.3 (235.2)
337.8 (277.3)
−16.7 (−78.6 to 45.3)
.60
20-m shuttle test, laps
15.21 (9.60)
14.80 (8.56)
19.72 (11.40)
18.18 (10.72)
0.87 (−1.41 to 3.15)
.45
*Baseline and postintervention values are unadjusted mean (SD).
†Change estimates and 95% confidence intervals (CIs) are the differences between groups after adjustment by mixed-model analysis of covariance for the baseline value, age, and
sex.
‡Groups were significantly different ( P,.05) at baseline by a nonparametric Wilcoxon rank sum test.
Table 3. Parent Reports of Children’s Television Viewing, Diet, and Physical Activity*
Baseline
Intervention
Children’s hours per week
Television
Videotapes
Video games
Overall household television
use, 0-16 scale
No. of children’s meals eaten in
front of the television, 0-14 meals
Percentage of children’s viewing
when snacking
Children’s other sedentary
behaviors, h/wk
Children’s physical activity, h/wk
12.43 (5.65)
4.96 (4.21)
Postintervention
Control
14.90 (7.10)
4.41 (3.72)
Intervention
Control
Adjusted Change
(95% CI)†
P Value
8.86 (4.91)
3.87 (2.87)
14.75 (7.37)
3.91 (3.21)
−4.29 (−5.89 to −2.70)
−0.25 (−1.19 to 0.69)
,.001
.60
1.84 (2.73)
7.09 (3.97)
2.71 (3.78)
8.60 (3.51)‡
1.44 (1.96)
6.09 (3.64)
2.57 (4.41)
7.76 (3.26)
−0.76 (−1.75 to 0.22)
−0.77 (−1.69 to 0.14)
.13
.10
3.18 (3.69)
3.53 (3.71)
2.19 (2.95)
3.43 (3.64)
−1.07 (−1.96 to −0.18)
.02
17.28 (20.91)
18.83 (41.24)
19.54 (22.43)
20.25 (22.70)
−1.94 (−9.06 to 5.17)
.59
44.89 (19.76)
39.79 (20.27)‡
41.31 (20.89)
43.37 (26.75)
−4.88 (−11.69 to 1.93)
.16
11.19 (7.16)
9.19 (5.77)
16.08 (8.45)
17.21 (9.32)
−2.00 (−4.58 to 0.59)
.13
*Baseline and postintervention values are unadjusted mean (SD).
†Change estimates and 95% confidence intervals (CIs) are the differences between groups after adjustment by mixed-model analysis of covariance for the baseline value, age, and sex.
‡Groups were significantly different ( P,.05) at baseline by a nonparametric Wilcoxon rank sum test.
JAMA, October 27, 1999—Vol 282, No. 16 1565
CHILDREN’S TELEVISION VIEWING AND OBESITY PREVENTION
inference might be made.23 In one previous obesity treatment study, obese
children who were reinforced (ie, rewarded) for decreasing sedentary activity (including television viewing and
computer games, as well as imaginative play, talking on the telephone, playing board games, etc) along with following an energy-restricted diet lost
significantly more weight than obese
children reinforced for increasing physical activity or those reinforced for both.44
Although that study did not directly test
the role of television, videotape, and
video game use, the similar findings support our results.
This experiment was designed to
overcome the dependence of epidemiological studies on error-prone measures of television viewing behaviors by
using BMI as the primary outcome.
However, the intervention did produce statistically significant decreases
in reported television viewing and video
game use, compared with controls. Previous studies of reducing children’s
television viewing have been uncontrolled and limited to a small number
of families.45-47 This study, therefore,
also represents a promising model for
studying other hypothesized effects of
television and videotape viewing and
video game use.
Because this study involved children in only 2 elementary schools, the
possibility that the results were due to
differences in the groups that were unrelated to the intervention cannot be
ruled out completely. This possibility
is made less likely, however, because
the schools were in a single school district and participants were comparable at baseline on almost all measured variables. In addition, the patterns
of the results strengthen the case for
causal inference. The crossover patterns of the changes in BMI, triceps
skinfold thickness, waist circumference, and waist-to-hip ratio lessen the
likelihood of scaling (a “ceiling effect”), regression, and selectionmaturation biases as alternative interpretations of the results.48,49
Effects of the intervention on diet and
activity were less clear. Compared with
1566
JAMA, October 27, 1999—Vol 282, No. 16
controls, children in the intervention
group significantly reduced the number
of meals they reportedly ate in front of
the television set. There were no significant effects on reports of snacking while
watching television or intake of high-fat
and highly advertised foods. However,
because snacking while watching television was assessed as a proportion, even
no change in this variable might result
in decreased energy intake as total viewing was decreased. Epidemiological studies have found associations among hours
of television viewing and children’s fat
and energy intakes,15,50 and experimental studies have shown that food advertising affects children’s snack choices and
consumption.51,52
Some epidemiological studies have
found weak inverse associations between hours of television viewing and
physical activity14,18 and fitness.8,16 Our
intervention did not result in a significant change in physical activity or cardiorespiratory fitness. However, because only moderate- and vigorousintensity activities were assessed, it is
also possible that reductions in television viewing resulted in increased
energy expenditure via more lowintensity activity. This is consistent with
the finding that reductions in television, videotape, and video game use did
not result in compensatory increases in
other sedentary pursuits. Larger experimental studies and improved measures of diet and activity are needed to
more definitively assess the specific
mechanisms that account for changes
in adiposity in response to reduced television, videotape, and video game use.
With a few exceptions, previous prevention interventions that have attempted to increase physical activity and
decrease dietary fat and energy intake
have been relatively ineffective at reducing body fatness.4,5 In contrast, this intervention targeting only television, videotape, and video game use produced
statistically significant and clinically significant relative changes in BMI, triceps skinfold thickness, waist circumference, and waist-to-hip ratio over a
period of 7 months. These changes occurred over the entire sample, shifting
the entire distribution of adiposity downward. Even a small shift downward in
the population distribution of adiposity would be expected to have large effects on obesity-related morbidity and
mortality.53 Additional experimental
studies with larger and more sociodemographically diverse samples are
needed to evaluate the generalizability
of these findings. However, this study
indicates that reducing television, videotape, and video game use may be a
promising, population-based approach
to help prevent childhood obesity.
Funding/Support: This work was funded by a grant
from the American Heart Association, California Affiliate, and by grant RO1 HL54102 from the National
Heart, Lung, and Blood Institute, Bethesda, Md. The
study was completed during the tenure of a ClinicianScientist Award from the American Heart Association.
Acknowledgment: I thank Marta Luna Wilde, MA,
Joel D. Killen, PhD, Dina L. G. Borzekowski, EdD, K.
Farish Haydel, Ann Varady, MS, Sally McCarthy, and
the students, teachers, and administrators who participated in this project.
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JAMA, October 27, 1999—Vol 282, No. 16 1567

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